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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Online Nonnegative Matrix Factorization With Robust Stochastic Approximation
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Online Nonnegative Matrix Factorization With Robust Stochastic Approximation

机译:具有鲁棒随机逼近的在线非负矩阵分解

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摘要

Nonnegative matrix factorization (NMF) has become a popular dimension-reduction method and has been widely applied to image processing and pattern recognition problems. However, conventional NMF learning methods require the entire dataset to reside in the memory and thus cannot be applied to large-scale or streaming datasets. In this paper, we propose an efficient online RSA-NMF algorithm (OR-NMF) that learns NMF in an incremental fashion and thus solves this problem. In particular, OR-NMF receives one sample or a chunk of samples per step and updates the bases via robust stochastic approximation. Benefitting from the smartly chosen learning rate and averaging technique, OR-NMF converges at the rate of $O(1/sqrt{k})$ in each update of the bases. Furthermore, we prove that OR-NMF almost surely converges to a local optimal solution by using the quasi-martingale. By using a buffering strategy, we keep both the time and space complexities of one step of the OR-NMF constant and make OR-NMF suitable for large-scale or streaming datasets. Preliminary experimental results on real-world datasets show that OR-NMF outperforms the existing online NMF (ONMF) algorithms in terms of efficiency. Experimental results of face recognition and image annotation on public datasets confirm the effectiveness of OR-NMF compared with the existing ONMF algorithms.
机译:非负矩阵分解(NMF)已成为一种流行的降维方法,并已广泛应用于图像处理和模式识别问题。但是,传统的NMF学习方法要求整个数据集都驻留在内存中,因此无法应用于大规模或流式数据集。在本文中,我们提出了一种有效的在线RSA-NMF算法(OR-NMF),该算法以增量方式学习NMF,从而解决了这一问题。特别是,OR-NMF每步接收一个样本或一大块样本,并通过鲁棒的随机逼近更新基数。得益于智能选择的学习速率和平均技术,OR-NMF在每次更新碱基时以$ O(1 / sqrt {k})$的速率收敛。此外,我们证明了使用准-集,OR-NMF几乎可以肯定地收敛到局部最优解。通过使用缓冲策略,我们使OR-NMF的一个步骤的时间和空间复杂度保持不变,并使OR-NMF适用于大规模或流数据集。实际数据集上的初步实验结果表明,在效率方面,OR-NMF优于现有的在线NMF(ONMF)算法。与现有的ONMF算法相比,在公开数据集上进行人脸识别和图像标注的实验结果证实了OR-NMF的有效性。

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